FY-4 A/GIIRS反演夏冬季有云时大气温湿度廓线的精度评估

Accuracy assessment of atmospheric temperature and humidity profiles retrievals under cloudy conditions in summer and winter from FY-4 A/GIIRS observations

  • 摘要: FY-4A/GIIRS(Geostationary Interferometric Infrared Sounder)首次实现了地球静止轨道红外高光谱探测,可以连续获得高垂直分辨率的大气温度和湿度廓线信息。当GIIRS视场内有云存在时,目前Level 2业务大气温湿度垂直廓线产品只提供观测视场内云顶以上高度的温度廓线,且不反演整个视场的湿度廓线。基于GIIRS辐射观测值用U-Net卷积神经网络算法实现了全天空大气温湿度廓线反演,包括晴空和全云覆盖视场,同时利用常规无线电探空观测资料对反演精度进行了检验。结果表明:U-Net算法有云视场的温湿度廓线反演能力与晴空相当,且夏季温度反演精度优于冬季,有利于灾害性天气多发季节的监测。在云系较活跃的夏季,随着视场内云量的增加温度廓线反演精度逐渐变高,表明该算法适用于有云时大气温度廓线反演,而湿度随着云量的增加反演均方根误差RMSE增大。视场内不同云光学厚度时温度反演误差相差不大,RMSE均在2.5 K左右,平均偏差ME在1 K以内,对流层高层薄云时反演误差相对而言较小。湿度反演随着云光学厚度的增大反演误差也增大,说明对于一定程度的薄云,GIIRS能够获得不错的反演精度。虽然U-Net算法物理意义不明确,但是能够快速实现全天空大气温湿度廓线反演,尤其在有云时能够获得更高的反演精度。

     

    Abstract:
    Objective Atmospheric temperature and humidity profiles are two important parameters for studying the state of the atmosphere, which have important applications in the research of atmospheric science. FY-4A/GIIRS (Geostationary Interferometric Infrared Sounder) has achieved the first geostationary orbit infrared hyperspectral detection, which can continuously obtain high vertical resolution atmospheric temperature and humidity profile information. Currently, when clouds exist in the GIIRS field of view (FOV), the Level 2 operational products only provide temperature profiles above cloud top within the observed field of view, and do not retrieve humidity profiles for the entire field of view. In addition, the commonly used atmospheric temperature and humidity profiles retrieval algorithms, including statistical methods, physical methods, and machine learning algorithms, are only based on a single observation field of view and do not consider the continuity of spatial information (especially horizontal dimensions) and feature transformations between fields of view. Furthermore, there was a lack of methods to retrieve atmospheric temperature and humidity profiles when the observational field of view was affected by clouds. The U-Net convolutional neural network algorithm is used to achieve the GIIRS all-sky atmospheric temperature and humidity profiles retrieval, which can obtain high retrieval accuracy under cloudy field of view.
    Methods All-sky retrieval of atmospheric temperature and humidity profiles, including clear sky and full cloud coverage fields of view, is realized with the U-Net convolutional neural network algorithm based on the GIIRS radiance observations. The algorithm converts the atmospheric temperature and humidity profiles retrieval problem into an image processing problem from the perspective of an image, and considers the image features of multiple neighboring fields of view with different weather conditions to obtain the atmospheric parameter information. This article based on radio sounding observations focuses on the accuracy assessment of the all-sky atmospheric temperature and humidity profiles retrieved by the U-Net machine learning algorithm, especially in cloudy fields of view, and analyzes the effects of different cloud amounts and different cloud optical thicknesses on the retrieval accuracy of the temperature and humidity profiles.
    Results and Discussions From Fig.6, it can be shown that the ME (Mean Error) and RMSE (Root Mean Square Error) of clear and all-sky retrieved temperatures by the U-Net algorithm are similar, but the RMSE of retrieval is larger below 800 hPa, especially for the clear sky in winter. From Fig.8, it can be shown that the ME is within ±0.5 g/kg for both winter and summer, all-sky and clear, with negative ME above 600 hPa, and the RMSE of clear sky is slightly smaller than all-sky. In general, the U-Net algorithm has comparable retrieval capabilities for atmospheric temperature and humidity profiles retrieval in clear sky and cloudy fields of view. From Fig.9, it can be shown that the temperature retrieval error increased with increase in cloud amount in winter time. In summer, on the contrary, the retrieval error decreased with the field of view gradually filled with clouds. This indicates that the algorithm has a slightly higher retrieval accuracy in summer compared to winter, and the retrieval accuracy is higher when the field of view has more clouds, and the algorithm is very suitable for the retrieval of atmospheric temperature profiles under cloudy conditions. Figure 10 shows that the RMSE of humidity retrieval increases with increasing cloud amount both in winter and summer. Figure 11 and 12 show that the difference of temperature retrieval error at different cloud optical thicknesses is small, while the humidity retrieval error increases with the increase of cloud optical thickness.
    Conclusions The U-Net retrieval ability of temperature and humidity profiles with cloudy field of view is equivalent to that of clear sky, and the accuracy of temperature retrieval in summer is better than in winter, which is beneficial to the monitoring of disastrous weather in the season of frequent occurrence. In the summer when the cloud system is more active, the retrieval accuracy of the temperature profile becomes gradually higher with the increase of the clouds in the field of view, indicating that the algorithm was applied to retrieve the atmospheric temperature profile under cloudy conditions. And the GIIRS can obtain a good retrieval accuracy for thin clouds. Although the physical significance of the U-Net algorithm is not clear, it can quickly retrieve the all-sky atmospheric temperature and humidity profiles, especially in cloudy conditions, and can obtain higher retrieval accuracy.

     

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